1,124 research outputs found
Surface Potential Decay and DC Conductivity of TiO2-based Polyimide Nanocomposite Films
Polymer nanocomposites have attracted wide interest as a method of enhancing polymer properties and extending their applications. Surface potential decay has been used widely as a tool to monitor charge transport and trapping characteristics of insulating materials. Polyimide (PI) as an engineering material has been paid more attention due to high thermal and chemical stability, good mechanical property and excellent insulating property in a wide range of temperature. There has been a lot of work over last few years on optical, thermal and mechanical properties of polyimide nanocomposites. However, little attention has been given to the effect of nano-fillers on charge transport and trapping in polyimide nanocomposites. In the present paper, pure, 1%, 3%, 5% and 7% polyimide nanocomposites was examined by using surface potential decay in conjunction with dc conductivity measurement and both experiments showed that 3% is the optimal value for electrical insulation
Topological semimetals with Riemann surface states
Riemann surfaces are geometric constructions in complex analysis that may
represent multi-valued holomorphic functions using multiple sheets of the
complex plane. We show that the energy dispersion of surface states in
topological semimetals can be represented by Riemann surfaces generated by
holomorphic functions in the two-dimensional momentum space, whose constant
height contours correspond to Fermi arcs. This correspondence is demonstrated
in the recently discovered Weyl semimetals and leads us to predict new types of
topological semimetals, whose surface states are represented by double- and
quad-helicoid Riemann surfaces. The intersection of multiple helicoids, or the
branch cut of the generating function, appears on high-symmetry lines in the
surface Brillouin zone, where surface states are guaranteed to be doubly
degenerate by a glide reflection symmetry. We predict the heterostructure
superlattice [(SrIrO)(CaIrO)] to be a topological semimetal
with double-helicoid Riemann surface states.Comment: Four pages, four figures and two pages of appendice
Novel Approaches for Regional Multifocus Image Fusion
Image fusion is a research topic about combining information from multiple images into one fused image. Although a large number of methods have been proposed, many challenges remain in obtaining clearer resulting images with higher quality. This chapter addresses the multifocus image fusion problem about extending the depth of field by fusing several images of the same scene with different focuses. Existing research in multifocus image fusion tends to emphasis on the pixel-level image fusion using transform domain methods. The region-level image fusion methods, especially the ones using new coding techniques, are still limited. In this chapter, we provide an overview of regional multi-focus image fusion, and two different orthogonal matching pursuit-based sparse representation methods are adopted for regional multi-focus image fusion. Experiment results show that the regional image fusion using sparse representation can achieve a comparable even better performance for multifocus image fusion problems
Pressure from data-driven estimation of velocity fields using snapshot PIV and fast probes
The most explored path to obtain pressure fields from Particle Image Velocimetry (PIV) data roots its basis on accurate measurement of instantaneous velocity fields and their corresponding time derivatives. This requires time-resolved measurements, which are often difficult to achieve due to hardware limitations and expensive to implement. In alternative, snapshot PIV experiments are more affordable but require enforcing physical
constraints (e.g. Taylor’s hypothesis) to extract the time derivative of the velocity field. In this work, we propose the use of data-driven techniques to retrieve time resolution from the combination of snapshot PIV and high-repetition-rate sensors measuring flow quantities in a limited set of spatial points. The instantaneous
pressure fields can thus be computed by leveraging the Navier–Stokes equations as if the measurement were time-resolved. Extended Proper Orthogonal Decomposition, which can be regarded as one of the simplest algorithm for estimating velocity fields from a finite number of sensors, is used in this paper to prove the
feasibility of this concept. The method is fully data-driven and, after training, it requires only probe data to obtain field information of velocity and pressure in the entire flow domain. This is certainly an advantage since model-based methods can retrieve pressure in an observed snapshot, but show increasing error as the field information is propagated over time. The performances of the proposed method are tested on datasets of increasing complexity, including synthetic test cases of the wake of a fluidic pinball and a channel flow, and experimental measurements in the wake of a wing. The results show that the data-driven pressure estimation is effective in flows with compact POD spectrum. In the cases where Taylor’s hypothesis holds well, the in-sample
pressure field estimation can be more accurate for model-based methods; nonetheless, the proposed data-driven approach reaches a better accuracy for out-of-sample estimation after less than 0.20 convective times in all tested cases.This project has received funding from the European Research Council (ERC) under the European Union’s Horizon 2020 research and innovation program (grant agreement No 949085). Funding for APC: Universidad Carlos III de Madrid (Read & Publish Agreement CRUE-CSIC 2022)
Symmetry Enforced Self-Learning Monte Carlo Method Applied to the Holstein Model
Self-learning Monte Carlo method (SLMC), using a trained effective model to
guide Monte Carlo sampling processes, is a powerful general-purpose numerical
method recently introduced to speed up simulations in (quantum) many-body
systems. In this work, we further improve the efficiency of SLMC by enforcing
physical symmetries on the effective model. We demonstrate its effectiveness in
the Holstein Hamiltonian, one of the most fundamental many-body descriptions of
electron-phonon coupling. Simulations of the Holstein model are notoriously
difficult due to the combination of the typical cubic scaling of fermionic
Monte Carlo and the presence of extremely long autocorrelation times. Our
method addresses both bottlenecks. This enables simulations on large lattices
in the most difficult parameter regions, and evaluation of the critical point
for the charge density wave transition at half-filling with high precision. We
argue that our work opens a new research area of quantum Monte Carlo (QMC),
providing a general procedure to deal with ergodicity in situations involving
Hamiltonians with multiple, distinct low energy states.Comment: 4 pages, 3 figures with 2 pages supplemental materia
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